From Spin States to Socially Integrated Ising Models: Proposed
Applications of Graph States, Stabilizer States, Toric States to Opinion
Dynamics
- URL: http://arxiv.org/abs/2312.00862v1
- Date: Fri, 1 Dec 2023 18:19:43 GMT
- Title: From Spin States to Socially Integrated Ising Models: Proposed
Applications of Graph States, Stabilizer States, Toric States to Opinion
Dynamics
- Authors: Yasuko Kawahata
- Abstract summary: Recent research has incorporated concepts from quantum information theory into models of opinion dynamics.
The incorporation of these concepts allows for a more detailed analysis of the process of opinion formation and the dynamics of social networks.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Recent research has developed the Ising model from physics, especially
statistical mechanics, and it plays an important role in quantum computing,
especially quantum annealing and quantum Monte Carlo methods. The model has
also been used in opinion dynamics as a powerful tool for simulating social
interactions and opinion formation processes. Individual opinions and
preferences correspond to spin states, and social pressure and communication
dynamics are modeled through interactions between spins. Quantum computing
makes it possible to efficiently simulate these interactions and analyze more
complex social networks.Recent research has incorporated concepts from quantum
information theory such as Graph State, Stabilizer State, and Surface Code (or
Toric Code) into models of opinion dynamics. The incorporation of these
concepts allows for a more detailed analysis of the process of opinion
formation and the dynamics of social networks. The concepts lie at the
intersection of graph theory and quantum theory, and the use of Graph State in
opinion dynamics can represent the interdependence of opinions and networks of
influence among individuals. It helps to represent the local stability of
opinions and the mechanisms for correcting misunderstandings within a social
network. It allows us to understand how individual opinions are subject to
social pressures and cultural influences and how they change over
time.Incorporating these quantum theory concepts into opinion dynamics allows
for a deeper understanding of social interactions and opinion formation
processes. Moreover, these concepts can provide new insights not only in the
social sciences, but also in fields as diverse as political science, economics,
marketing, and urban planning.
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